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<CreaDate>20231118</CreaDate>
<CreaTime>21543900</CreaTime>
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<idCitation>
<resTitle>Forests of Australia 2018</resTitle>
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<idAbs>Forests of Australia (2018) is a continental spatial dataset of forest extent, by national forest categories and types, assembled for Australia's State of the Forests Report 2018. It was developed from multiple forest, vegetation and land cover data inputs, including contributions from Australian, state and territory government agencies and external sources. A forest is defined in this dataset as "An area, incorporating all living and non-living components, that is dominated by trees having usually a single stem and a mature or potentially mature stand height exceeding two metres and with existing or potential crown cover of overstorey strata about equal to or greater than 20 per cent. This includes Australia's diverse native forests and plantations, regardless of age. It is also sufficiently broad to encompass areas of trees that are sometimes described as woodlands". The dataset was compiled by the Australian Bureau of Agricultural and Resource Economics and Sciences (ABARES) for the National Forest Inventory (NFI), a collaborative partnership between the Australian and state and territory governments. The role of the NFI is to collate, integrate and communicate information on Australia's forests. State and territory government agencies collect forest data using independent methods and at varying scales or resolutions. The NFI applies a national classification to state and territory data to allow seamless integration of these datasets. Multiple independent sources of external data are used to fill data gaps and improve the quality of the final dataset.
The NFI classifies forests into three national forest categories (Native forest, Commercial plantation, and Other forest) and then into various forest types. Commercial plantations presented in this dataset were sourced from the National Plantation Inventory (NPI) spatial dataset (2016), also produced by ABARES. Another dataset produced by ABARES, the Catchment scale Land Use and Management (CLUM) dataset (2016), was used to identify and mask out land uses that are inappropriate to map as forest. The Forests of Australia (2018) dataset is produced to fulfil requirements of Australia's National Forest Policy Statement and the Regional Forests Agreement Act 2002 (Cwth), and is used by the Australian Government for domestic and international reporting.
Previous versions of this dataset are available on the Forests Australia website spatial data page and the Australian Government open government data portal data.gov.au.
</idAbs>
<searchKeys>
<keyword>Forest; Forest cover; Land cover; Forest type; Plantation; Vegetation; Vegetation cover; Tree cover; Woody cover; Australia</keyword>
</searchKeys>
<idPurp>Forests of Australia (2018) is a continental spatial dataset of forest extent, by national forest categories and types. </idPurp>
<idCredit>Australian Bureau of Agricultural and Resource Economics and Sciences, Forests of Australia (2018), Australian Bureau of Agricultural and Resource Economics and Sciences, Canberra, December.</idCredit>
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<useLimit>Creative Commons by Attribution 4.0 International (CC BY 4.0)</useLimit>
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